Department of Oncology-Pathology, Karolinska Institutet, Stockholm, Sweden; Department of Clinical Pathology and Cytology, Karolinska University Laboratory, Stockholm, Sweden.
School of Computer Science and Communication, KTH Royal Institute of Technology, Stockholm, Sweden; Science for Life Laboratory, Stockholm, Sweden.
Transl Res. 2018 Apr;194:19-35. doi: 10.1016/j.trsl.2017.10.010. Epub 2017 Nov 7.
Breast cancer is the most common malignant disease in women worldwide. In recent decades, earlier diagnosis and better adjuvant therapy have substantially improved patient outcome. Diagnosis by histopathology has proven to be instrumental to guide breast cancer treatment, but new challenges have emerged as our increasing understanding of cancer over the years has revealed its complex nature. As patient demand for personalized breast cancer therapy grows, we face an urgent need for more precise biomarker assessment and more accurate histopathologic breast cancer diagnosis to make better therapy decisions. The digitization of pathology data has opened the door to faster, more reproducible, and more precise diagnoses through computerized image analysis. Software to assist diagnostic breast pathology through image processing techniques have been around for years. But recent breakthroughs in artificial intelligence (AI) promise to fundamentally change the way we detect and treat breast cancer in the near future. Machine learning, a subfield of AI that applies statistical methods to learn from data, has seen an explosion of interest in recent years because of its ability to recognize patterns in data with less need for human instruction. One technique in particular, known as deep learning, has produced groundbreaking results in many important problems including image classification and speech recognition. In this review, we will cover the use of AI and deep learning in diagnostic breast pathology, and other recent developments in digital image analysis.
乳腺癌是全球女性最常见的恶性疾病。近几十年来,早期诊断和更好的辅助治疗显著改善了患者的预后。组织病理学诊断已被证明有助于指导乳腺癌治疗,但随着我们多年来对癌症的认识不断加深,新的挑战也随之出现,揭示了癌症的复杂性。随着患者对乳腺癌个体化治疗的需求不断增长,我们迫切需要更精确的生物标志物评估和更准确的组织病理学乳腺癌诊断,以做出更好的治疗决策。病理学数据的数字化为通过计算机图像分析实现更快、更可重复和更精确的诊断开辟了道路。多年来,已有软件通过图像处理技术辅助诊断乳腺病理学。但近年来人工智能 (AI) 的突破有望从根本上改变我们在不久的将来检测和治疗乳腺癌的方式。机器学习是人工智能的一个分支,它应用统计学方法从数据中学习,由于其能够识别数据中的模式而无需大量人工指导,近年来引起了极大的兴趣。特别是一种称为深度学习的技术,在图像分类和语音识别等许多重要问题上取得了突破性的成果。在这篇综述中,我们将介绍 AI 和深度学习在诊断性乳腺病理学中的应用,以及数字图像分析的其他最新进展。